论文标题

使用智能椅子的健康坐姿的姿势预测

Posture Prediction for Healthy Sitting using a Smart Chair

论文作者

Gelaw, Tariku Adane, Hagos, Misgina Tsighe

论文摘要

不良的坐着习惯已被确定为肌肉骨骼疾病的危险因素和下背部疼痛,尤其是老年人,残疾人和办公室工作人员。在当前的计算机化世界中,即使参与休闲或工作活动,人们也倾向于大部分时间坐在计算机桌上。这可能导致脊柱疼痛和相关问题。因此,一种提醒人们坐着习惯并提供平衡的建议(例如体育锻炼)很重要的手段很重要。由于大多数作品专注于站立姿势,因此对座位姿势的姿势识别没有得到足够的关注。可穿戴传感器,压力或力传感器,视频和图像用于文献中的姿势识别。这项研究的目的是通过分析从座椅和靠背的椅子上收集的数据来构建机器学习模型,以分析从两个32 x 32压力传感器的椅子上收集的数据。使用五种算法建立模型:随机森林(RF),高斯幼稚的贝叶斯,逻辑回归,支持向量机和深神经网络(DNN)。使用KFOLD交叉验证技术评估所有模型。本文介绍了使用两个单独的数据集进行的实验,这些数据集受控和现实,并讨论了在对六个坐姿进行分类时获得的结果。在受控和逼真的数据集上,平均分类精度分别达到98%和97%。

Poor sitting habits have been identified as a risk factor to musculoskeletal disorders and lower back pain especially on the elderly, disabled people, and office workers. In the current computerized world, even while involved in leisure or work activity, people tend to spend most of their days sitting at computer desks. This can result in spinal pain and related problems. Therefore, a means to remind people about their sitting habits and provide recommendations to counterbalance, such as physical exercise, is important. Posture recognition for seated postures have not received enough attention as most works focus on standing postures. Wearable sensors, pressure or force sensors, videos and images were used for posture recognition in the literature. The aim of this study is to build Machine Learning models for classifying sitting posture of a person by analyzing data collected from a chair platted with two 32 by 32 pressure sensors at its seat and backrest. Models were built using five algorithms: Random Forest (RF), Gaussian Naïve Bayes, Logistic Regression, Support Vector Machine and Deep Neural Network (DNN). All the models are evaluated using KFold cross-validation technique. This paper presents experiments conducted using the two separate datasets, controlled and realistic, and discusses results achieved at classifying six sitting postures. Average classification accuracies of 98% and 97% were achieved on the controlled and realistic datasets, respectively.

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